{
 "cells": [
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "# PmodTMP2 Sensor example\n",
    "\n",
    "In this example, the Pmod temperature sensor is initialized and set to log a reading every 1 second. \n",
    "\n",
    "This example requires the PmodTMP2 sensor, and assumes it is attached to PMODB."
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### 1. Simple TMP2 read() to see current room temperature"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 1,
   "metadata": {
    "collapsed": false
   },
   "outputs": [],
   "source": [
    "from pynq.overlays.base import BaseOverlay\n",
    "base = BaseOverlay(\"base.bit\")"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "metadata": {
    "collapsed": false
   },
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "27.9 C\n"
     ]
    }
   ],
   "source": [
    "from pynq.lib import Pmod_TMP2\n",
    "\n",
    "mytmp = Pmod_TMP2(base.PMODB)\n",
    "temperature = mytmp.read()\n",
    "\n",
    "print(str(temperature) + \" C\")"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### 2. Starting logging temperature once every second"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "metadata": {
    "collapsed": false
   },
   "outputs": [],
   "source": [
    "mytmp.start_log()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### 3. Try to modify temperature reading by touching the sensor\n",
    "\n",
    "The default interval between samples is 1 second. So wait for at least 10 seconds to get enough samples.\n",
    "\n",
    "During this period, try to press finger on the sensor to increase its temperature reading.\n",
    "\n",
    "Stop the logging whenever done trying to change sensor's value."
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 4,
   "metadata": {
    "collapsed": false
   },
   "outputs": [],
   "source": [
    "mytmp.stop_log()\n",
    "log = mytmp.get_log()"
   ]
  },
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "### 5. Plot values over time"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "metadata": {
    "collapsed": false,
    "scrolled": true
   },
   "outputs": [
    {
     "data": {
      "image/png": "iVBORw0KGgoAAAANSUhEUgAAAXcAAAEKCAYAAADpfBXhAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz\nAAALEgAACxIB0t1+/AAAHGRJREFUeJzt3X+UXWV97/H3J2bhj0QSsNb8kh9O4dbKFVTEYm4XB1lR\nfhXKraVgUk1rXfcubMgSKmgu48yYdRWrrTdqva5GQiDSWkmRcOlViI1HFmggaIJpQhIaQgwTgigo\nTrwqmO/9Yz8zHibnzOyTOTNn5pnPa62zzj57P8/ez54z853nPPs5362IwMzM8jKl3Q0wM7PWc3A3\nM8uQg7uZWYYc3M3MMuTgbmaWIQd3M7MMObibjXOSbpT00Xa3wyYWB3cbNZJ+JunZ9Pi1pJ/XrLtc\nUpekQ5KWDKq3NK3/SHp9Vqr/rKSfSnpY0uK07SRJt0v6oaQfSfqapJOHaNNcSWslPSXpGUnfl/Tu\nUf1BmLWBg7uNmoh4eUQcHRFHA3uBC2rW/VMqthMYHFzfndbX6k31ZgAfAlZK+l1gJrAOOBl4FbAp\nvW5kTWrLq4FXAH8GPHnEJ9likl7U7jZYHhzcbawoPQZ7EHiZpNcCSPo94CUUQbquiFgHPAP8XkRs\niogbI+InEfFr4NPAf5J0TIPqbwZuiohfRMShiHgoIu4aaKT0+5LuS736zZLOqtn2TUkflXRv+hTx\ndUnHpm0vlrQmfXp4RtL9kl6Zts2WtE7SjyXtkvSXNfvsknRrqvsT4D3D/iCl90l6JB3rdkmza7a9\nXdKO1Ia/l1SV9BfD7dPy4+Bu7RYUven+oPYe4Gbq/yNAhUuAGcDWOkXOAp6IiGcaHO87wOcl/amk\nVw/a9xzgTuCjEXEM8NfAv0h6RU2xy1MbXwm8OJXpb/fRwFzgWOC/A/8vbftn4AfALOBPgI9JqtTs\n8yLgKxExE7ilQbv72/g24GPAO4HZab9fTtt+C7gVuJbiU8lO4Myh9mf5cnC38eAW4DJJU4HLgC/V\nKTNX0tPAU0AnsCgiHqktIGke8DngA0Mc60+Ae4DrgEdT7/xNadsi4F/7e/IR8W8UnyzOr6l/Y0Ts\njohfAl8BTkvrn6MIqCdHYXNE9KU2nQlcGxHPRcRDwBd54VDUdyLi/6Rj/nKItgO8C7ghfeJ4Dvgw\n8PuSjgPOA/49ItalTyWfYRwNOdnYcnC3touIfcBuih7projorVOsNyKOjYjfiog3RsSttRvTEMhd\nwOci4itDHOunEbEsIv4zxRj9FuD2tPl44FJJT6fHM8B8ih53vwM1yz8HpqflNen4X5b0uKTr0/j5\nHODpiPh5Tb29FD38fvsatbeOOal+//kcBJ5O+5tTZ1+PN7Fvy4iDu40XNwNXATc1W1HSTIrAentE\nXF+2XkQ8DXwKmJPG6PcBN6d/IsdGxDHpAvAnS+zr+YhYHhGvA94K/CFF73w/cKykaTXFjwNq/4E1\nk5p1P8U/IQDSfl+R9vcExYXiWvOa2LdlxMHdxot/Bt5OMWZcmqSXA3cD90bE/yhR/npJr5P0olT3\nCuA/0hj9l4A/TBclp0h6SZqGOafEfiuSTpE0BeijGKb5dUQ8Dnwb+Hi66Pp64L0UPf0j8U/An0t6\nvaQXU3za2RgRPwD+FThF0kXp/P6K4tOJTUIO7jZWhuydptkrG2rGnMv2Zi8B3kQR8H5WM4++UY/1\nZcBXKWbb/AdFT/ei1IbHgYuBZRRj+3spLpj2/50M1aZZwFrgp8A24Jv85trB5cCJFL3ufwE6I+Kb\nJc/vBcdN1wE6gdsoeusnUlynICJ+THFN4ZPAj4DfpbhmMNw4vmVIw92sI/2R3EzRAzgErIyIz0g6\nFfjfwDTgMWBhRPTVqT+D4gLSKan+X0TE/a08CTM7nCRRjLm/KyK+1e722Ngq03N/HrgqjSWeCVyR\n5iSvBK6JiFMpekLXNKi/Avi/EfFa4FTg4ZE328zqSUNKM9KQTf8w1cZ2tsnaY9jgHhEHImJLWu4D\ndlBcmT8pIu5Nxb4B/PHgupKOBv4gIm5M9Z+PiGdb1XgzO8yZFDOPfghcAFxcYnqlZaipMXdJJ1DM\n690IbJN0Udp0KfWvyp8I/EhF4qPvSfoHSS8dQXvNbAgR0ZOmi86IiDMj4sF2t8nao3RwlzSd4oLR\n0tSDfy/wfkmbKMbdf1Wn2lTgjcDfR8QbKeYFf2jErTYzsyFNLVMofXNwLbAm5fUgInYC70jbT6L4\nCDjY48C+mt7DWoqvRtc7RjNzfc3MDIiIuqk6yvbcVwHbI2JF/4qapEhTKL7K/YU6B30S2FeTgvUc\nYPsQjcz60dXV1fY2TIbz7F64kD6K+YP9jz6ge+HCEZUdb+c5Gd5Ln+fQj6EMG9wlzQcWAm9LeTi+\nJ+lc4HJJO1Ow7o2I1an8bEl31uziSuAWSVsoZst8bLhjmo3E4uXL6ero4GB6fRDo6uhg8fLlIypr\nNpEMOywTEfcB9XJMfx34TJ3yTwAX1rx+iCLNqtmYOP7EE1myfj2f6uzk0P79TJkzhyXLl3P8iSeO\nqKzZRFJqzN1ao1KptLsJY2I8nOfxJ55I15fqJZccWdla4+E8R9tkOEfI8zyH/YbqWJEU46UtZmYT\ngSRihBdUzcxsAnFwNzPLkIO7mVmGHNzNzDLk2TI2Iezds4fVnZ0c6u1lyty5LPZ0RbMhebaMjXt7\n9+zhswsW0LN7N9P4zReNlqxf7wBvk5pny9iEtrqzcyCwQ5Glrmf3blZ3drazWWbjmoO7jXuHenuZ\nNmjdNODQ/v3taI7ZhODgbuPelLlzB3K/9DsITJkz7H2rzSYtB3cb95zcy6x5vqBqE8LAbJmU3Muz\nZcyGvqDq4G5mNkF5toyZ2STj4G5mliEHdzOzDJW5zd48SRskbZO0VdKVaf2pkr4t6SFJ6yRNH2If\nU9Lt+e5oZePNzKy+Mj3354GrIuJ1wJnAFZJeC6wEromIU4GvAtcMsY+lDHFjbDMza61hg3tEHIiI\nLWm5D9gBzAVOioh7U7FvAH9cr76kecD5wBdb0mIbt/bu2UPPokV0nX02PYsWsXfPnpaWN7PymsoK\nKekE4DRgI7BN0kURcQdwKTCvQbVPAx8EZhx5M228q5vca+PGhsm9mi1vZs0pfUE1jamvBZamHvx7\ngfdL2kSR6uNXdepcADyZev5KD8tQs8m9nAzMbHSV6rlLmkoR2NdExDqAiNgJvCNtPwm4oE7V+cBF\nks4HXgq8XNLNEfHuesfp7u4eWK5UKlnekTxXzSb3cjIws+ZVq1Wq1WqpsmWHZVYB2yNiRf8KSa+M\niKckTQGuA74wuFJELAOWpfJnAVc3CuzwwuBuE0t/cq/agD1Ucq9my5vZ4Z3enp6ehmXLTIWcDywE\n3iZpc5rSeC5wuaSdFLNgeiNidSo/W9KdIzoDm3CaTe7lZGBmo8u5Zaxlmk3u5WRgZiPjxGFmZhly\n4jAzs0nGwd3MLEMO7mZmGXJwNzPLkIO7mVmGHNzNzDLk4G5mliEHdzOzDDm4m5llyMHdzCxDDu5m\nZhlycDczy5CDu5lZhhzczcwy5OBuZpYhB3czsww5uJuZZajMPVTnSdogaZukrZKuTOtPlfRtSQ9J\nWidpetm6ZmY2uoa9zZ6kWcCsiNiSAviDwCXATcBVEXGvpMXAayLiI8PU/S5wcUTsqHMc32ZvDAzc\nt7S3lylz5w5539JmyprZ2GvpPVQl3Q58Drg1Io5J6+YBd0XE60rU/WxE/FudbQ7uo2zvnj18dsEC\nenbvZhpwEOjq6GDJ+vWHBe1myppZe7TsHqqSTgBOAzYC2yRdlDZdCswrWff+Zo5prbO6s3MgWANM\nA3p272Z1Z+eIyprZ+DO1bME0rLIWWBoRfZLeC3xGUidwB/CrsnUblevu7h5YrlQqVCqVss2zEg71\n9g4E637TgEP794+orJmNjWq1SrVaLVW2VHCXNJUiOK+JiHUAEbETeEfafhJwQdm6jdQGd2u9KXPn\nchBeELQPAlPmzBlRWTMbG4M7vT09PQ3Llh2WWQVsj4gV/SskvTI9TwGuA75Qtq61x+Lly+nq6OBg\net0/jr54+fIRlTWz8afMbJn5wD3AViDSYxlwMvD+9Pq2iFiWys8GVkbEhY3qRsTX6xzHF1THwMAM\nmP37mTJnTrnZMiXKmtnYa+lsmdHi4G5m1pyWzZYxM7OJwcHdzCxDDu5mZhlycDczy5CDu5lZhkp/\nQ9XMCk6oZhOBp0KaNcEJ1Ww88VRIsxZxQjWbKBzczZrghGo2UTi4mzWhP6FaLSdUs/HIwd2sCU6o\nZhOFL6iaNckJ1Wy8cOIwM7MMebaMmdkk4+BuZpYhB3czsww5uJuZZWjY4C5pnqQNkrZJ2irpyrT+\nVEnflvSQpHWSpjeof66kHZJ2Sbq21SdgZmaHK3MP1VnArIjYkgL4g8AlwE3AVRFxr6TFwGsi4iOD\n6k4BdgHnAPuBTcBlEbGjznE8W+YIOImV2eQ11GyZYbNCRsQB4EBa7pO0A5gLnBQR96Zi3wDuAj4y\nqPoZwCMRsTc15MvAxcBhwd2aVzeJ1caNTmJlZs2NuUs6ATgN2Ahsk3RR2nQpMK9OlbnAvprXj6d1\n1gJOYmVmjZTO556GZNYCS1MP/r3AZyR1AncAvxppY7q7uweWK5UKlUplpLvMmpNYmU0u1WqVarVa\nqmyp4C5pKkVgXxMR6wAiYifwjrT9JOCCOlV7geNqXs9L6+qqDe42vP4kVrUB3kmszPI1uNPb09PT\nsGzZYZlVwPaIWNG/QtIr0/MU4DrgC3XqbQJ+R9Lxko4CLqPo5VsLOImVmTVSZrbMfOAeYCsQ6bEM\nOBl4f3p9W0QsS+VnAysj4sL0+lxgBcU/khsi4voGx/FsmSPgJFZmk5cTh5mZZciJw8zMJhkHdzOz\nDDm4m5llyMHdzCxDDu5mZhlycDczy1Dp9ANm1rxms3Y6y6e1iue5m42Sulk7OzoaZu1stryZ57mb\ntUGzWTud5dNaycHdbJQ0m7XTWT6tlRzczUZJf9bOWkNl7Wy2vNlQHNzNRkmzWTud5dNayRdUzUZR\ns1k7neXTmuGskGZmGfJsGTOzScbB3cwsQw7uZmYZGja4S5onaYOkbZK2SroyrT9D0gOSNqfn0xvU\n/3Cq+31Jt6R7qZqZ2Sgq03N/HrgqIl4HnAlcIem1wCeA6yLiDUAX8MnBFSUdD7wPeENEvJ4il81l\nrWq8mZnVN2zisIg4ABxIy32SdgBzgCeAmanYTKC3TvVngV8B0yQdAl4G+Ot2Zi3gpGQ2lKamQko6\nAagCpwDHAvcBAQh4a0Tsq1PnfcDfAT8H7o6IP2uwb0+FNCvJSckMWjQVUtJ0YC2wNCL6gBuAJRFx\nHPABYFWdOq9J246n6O1Pl/Su5k/BzGo5KZkNp1Q+d0lTKQL7mohYl1a/JSIWAETEWkk31Kl6OnBf\nRDyd9nMb8FbgH+sdp7u7e2C5UqlQqVTKnYXZJOOkZJNTtVqlWq2WKlv2Zh2rgO0RsaJm3SOSzoqI\nb0k6B9hVp95OoFPSS4BfAucAmxodpDa4m1lj/UnGagN2maRkZcvb+DS409vT09Ow7LBj7pLmA/cA\nWynG1wNYBjwFfB44CvgFcEVEbJY0G1gZERem+h8EFgO/BjYDfxkRz9U5jsfczUrymLuBc8uYZclJ\nyczB3cwsQ04cZmY2yTi4m5llyMHdzCxDDu5mZhlycDczy1DZLzHZGHKCJ2s3/w5OfJ4KOc74yybW\nbv4dnDg8FXICcYInazf/DubBwX2ccYInazf/DubBwX2c6U/wVMsJnmws+XcwDw7u48zi5cvp6ugY\n+OPqH+9cvHx5O5tlk4h/B/PgC6rjkBM8Wbv5d3BicOIwM7MMebaMmdkk4+BuZpYhB3czswwNG9wl\nzZO0QdI2SVslXZnWnyHpAUmb0/PpDerPkHSrpIfTPt7S6pMwM7MXKnMP1VnArIjYImk68CBwCcX9\nUz8eEXdLOg+4JiLOrlN/NfCtiLhR0lTgZRHxbJ1yvqBqZtaEoS6oDps4LCIOAAfScp+kHcAc4Alg\nZio2E+itc+CjgT+IiMWp/vPAYYHdzCa2ZhONNVN+NPedtYgo/QBOAB4DpgPHAfuAH6TnV9cpfypw\nP3Aj8D3gH4CXNth3mNnE89ijj8bVHR3RBxEQfRBXd3TEY48+OuLyo7nvHKS4WT9eN9pwWMEioD8I\nXJxerwf+KC2/E1hfp86bgOeA09Pr/wX0NNj/mPwwzKy1uhcuHAimURNUuxcuHHH50dx3DoYK7qXy\nuaex8rXAmohYl1a/JSIWpKi8VtINdao+DuyLiAfT67XAtY2O093dPbBcqVSoVCplmmdmbdRsorFm\nyo/mvieiarVKtVotVbbszTpWAdsjYkXNukcknRUR35J0DrBrcKWIeFLSPkknR8Qu4Bxge6OD1AZ3\nM5sY+hON1QbVoRKNNVN+NPc9EQ3u9Pb09DQu3KhLH78ZLpkP/BrYAmymGDs/l2LI5f607jvAG1L5\n2cCdNfVPBTal+rcBMxocZ/Q/w5hZy3nMvX0YYljGuWXMbMSaTTTWTPnR3PdE58RhZmYZcuIwM7NJ\nxsHdzCxDDu5mZhlycDczy5CDu5lZhsp+icnMLDvjKeFZyzWaAD/WD/wlJjMbQ+Ppy1dHiiG+xORh\nGTOblFZ3dtKze/dAqoJpQM/u3azu7Bxx+Wb3PRoc3M1sUhpPCc9Gg4O7mU1K/UnGapVJSlamfLP7\nHhWNxmvG+oHH3M1sDOU+5u7cMmY2aY2nhGdHwonDzMwy5MRhZmaTjIO7mVmGHNzNzDLk4G5mlqFh\ng7ukeZI2SNomaaukK9P6MyQ9IGlzej59iH1MkfQ9SXe0svFmZlZfmcRhzwNXRcQWSdOBByWtBz4B\nXBcRd0s6D/gkcHaDfSwFtgNHt6LRZma5aXWisWGDe0QcAA6k5T5JO4A5wBPAzFRsJtBbr76kecD5\nwP8ErjrilpqZZWrvnj18dsGCgXw0B4GujRtZsn79EQf4psbcJZ0AnAbcD3wI+FtJPwD+Bvhwg2qf\nBj4IeBK7mVkdo5ForHQ+9zQksxZYmnrwXwWWRMTtkt4JrAIWDKpzAfBkGtKpAHUn2/fr7u4eWK5U\nKlQqlbLNMzObsMomGqtWq1Sr1VL7LPUNVUlTgTuBr0XEirTu2Yg4uqbMTyNixqB6HwMWUYzbvxR4\nOXBbRLy7zjH8DVUzm5R6Fi3ir2+55QUB/iDwqYUL6frSlxrWa8U3VFcB2/sDe/KIpLPSAc4Bdg2u\nFBHLIuK4iHgNcBmwoV5gNzObzBYvX05XR8dAJsmDQFdHB4uXLz/ifQ7bc5c0H7gH2Eoxbh7AMuAp\n4PPAUcAvgCsiYrOk2cDKiLhw0H7OAq6OiIsaHMc9dzObtI4k0ZgTh5mZZciJw8zMJhkHdzOzDDm4\nm5llyMHdzCxDDu5mZhlycDczy5CDu5lZhhzczcwy5OBuZpYhB3czsww5uJuZZcjB3cwsQw7uZmYZ\ncnA3M8uQg7uZWYYc3M3MMuTgbmaWoWGDu6R5kjZI2iZpq6Qr0/ozJD0gaXN6Pr1sXTMzG11l7qE6\nC5gVEVskTQceBC6huH/qxyPibknnAddExNnD1P0ucHFE7KhzHN9mz8ysCUPdZm/qcJUj4gBwIC33\nSdoBzAGeAGamYjOB3hJ1HwbmAocFdzMza52mbpAt6QSgCpwCHAvcBwQg4K0Rsa9M3Yjoq7PdPXcz\nsyaMqOdes5PpwFpgaeqFfxVYEhG3S3onsApYUKZuo2N0d3cPLFcqFSqVStnmmZllr1qtUq1WS5Ut\n1XOXNBW4E/haRKxI656NiKNryvw0ImaUqdvgGO65m5k1Yaiee9mpkKuA7YOC8yOSzkoHOAfY1URd\nMzMbRWVmy8wH7gG2UoyvB7AMeIpixsxRwC+AKyJis6TZwMqIuLBR3Yj4ep3juOduZtaEoXruTV1Q\nHU0O7mZmzWnFsIyZmU0gDu5mZhlycDczy5CDu5lZhhzczcwy5OBuZpYhB3czsww5uJuZZcjB3cws\nQw7uZmYZcnA3M8uQg7uZWYYc3M3MMuTgbmaWIQd3M7MMObibmWXIwd3MLEPDBndJ8yRtkLRN0lZJ\nV6b1Z0h6QNLm9Hx6g/rnStohaZeka1t9AmZmdrgy91CdBcyKiC2SpgMPApdQ3D/14xFxt6TzgGsi\n4uxBdadQ3Dj7HGA/sAm4LCJ21DmOb7NnZtaEEd1mLyIORMSWtNwH7ADmAE8AM1OxmUBvnepnAI9E\nxN6IeA74MnBx86dgZmbNmNpMYUknAKcB9wOPAPdJ+hQg4K11qswF9tW8fpwi4JuZ2SgqfUE1Dcms\nBZamHvwNwJKIOA74ALBqdJpoZmbNKtVzlzSVIrCviYh1afVbImIBQESslXRDnaq9wHE1r+dRf/gG\ngO7u7oHlSqVCpVIp0zwzs0mhWq1SrVZLlR32giqApJuBH0XEVTXrvgtcFRHfknQOcH1EvHlQvRcB\nOykuqD4BPABcHhEP1zmGL6iamTVhqAuqZWbLzAfuAbYCkR7LgKcoZswcBfwCuCIiNkuaDayMiAtT\n/XOBFRRDQDdExPUNjuPgbmbWhBEF97Hi4G5m1pwRTYU0M7OJx8HdzCxDDu5mZhlycDczy5CDu5lZ\nhhzcx1DZLx9MdD7PfEyGc4Q8z3NcBfeeRYvYu2dPw+179+yhZ9Eius4+e9iyzZYfk30vXlxq3xNd\njn8o9UyG85wM5wiZnmdEjIsHEH0QV3d0xGOPPhqDPfboo3F1R0f0QcQwZZstP1b77iqx7xx0dXW1\nuwljYjKc52Q4x4iJe55FCK8fU8dVz30a0LN7N6s7Ow/btrqzk57du5lWomyz5cfTvs3MWmFcfUO1\n3W0wM5toYrynHzAzs9YZV8MyZmbWGg7uZmYZantwl3SupB2Sdkm6tt3tGS2SHpP0kKTNkh5od3ta\nRdINkp6U9P2adcdIulvSTkl3SZrRzjaOVINz7JL0uKTvpce57WxjK0iaJ2mDpG2Stkq6Mq3P7f0c\nfJ5L0vqs3tO2jrlLmgLsoriZx35gE3BZROxoW6NGiaRHgTdFxDPtbksrSfovQB9wc0S8Pq37BPDj\niPib9A/7mIj4UDvbORINzrEL+FlE/F1bG9dCkmYBsyJiS7qt5ncpbmj/5+T1fjY6zz8lo/e03T33\nM4BHImJvRDwHfJnih5wj0f6fd8tFxL3A4H9YFwM3peWbgD8a00a1WINzhOI9zUZEHIiILWm5D3iY\n4taYub2f9c5zbtqczXva7mAzF9hX8/pxfvNDzk0A6yVtkvS+djdmlP12RDwJxR8S8Nttbs9o+StJ\nWyR9caIPVQwm6QTgNGAj8Kpc38+a87w/rcrmPW13cJ9M5kfEG4Hzgfenj/qTRY7zbT8PvCYiTgMO\nAFl8lAdIQxVrgaWpZzv4/cvi/axznlm9p+0O7r3AcTWv56V12YmIJ9LzU8BXKYakcvWkpFfBwPjm\nD9vcnpaLiKfiNxesVgJvHqr8RCFpKkXAWxMR69Lq7N7PeueZ23va7uC+CfgdScdLOgq4DLijzW1q\nOUkvS70EJE0D3g78e3tb1VLihWOVdwCL0/J7gHWDK0xALzjHFOT6/VfyeT9XAdsjYkXNuhzfz8PO\nM7f3tO3fUE3TjVZQ/KO5ISKub2uDRoGkEyl66wFMBW7J5Twl/SNQAV4BPAl0AbcDtwKvBvYCl0bE\nT9rVxpFqcI5nU4zVHgIeA/5b/7j0RCVpPnAPsJXidzWAZcADwFfI5/1sdJ7vIqP3tO3B3czMWq/d\nwzJmZjYKHNzNzDLk4G5mliEHdzOzDDm4m5llyMHdzCxDDu5mZhlycDczy9D/B/5WkbiJAZfNAAAA\nAElFTkSuQmCC\n",
      "text/plain": [
       "<matplotlib.figure.Figure at 0x31dc9cb0>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "%matplotlib inline\n",
    "import matplotlib.pyplot as plt\n",
    "\n",
    "plt.plot(range(len(log)), log, 'ro')\n",
    "plt.title('TMP2 Sensor log')\n",
    "plt.axis([0, len(log), min(log), max(log)])\n",
    "plt.show()"
   ]
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "Python 3",
   "language": "python",
   "name": "python3"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.4.3+"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 1
}
